Senior Data Engineer (12 months FTC to Perm)

Diagonal recruitment
London
3 days ago
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*our client is unable to offer sponsorship - only apply if you have the right to work in the UK


Overview


Our client is a well-funded startup (150+ people) and readying to scale. They have award-winning solutions in the fast-moving digital advertising space with proprietary tech, media and petabyte scale data.


The Role


We're seeking a well-rounded Senior Data Engineer to join a Product, Data and Engineering org of 50+ people based out of London and working in scrums and being involved end-to-end across multiple products covering audience insights, analytics and advertising.


You'll be relied upon to design, develop and maintain data pipelines to enhance and support products as well as design & deliver new innovations for growth, including Agentic development.


Technology / Skills requirements


  • SQL
  • ELT/ETL
  • Data Modelling
  • dbt models
  • Version control (Git)
  • Data processing and orchestration using Airflow or similar
  • Google BigQuery or Redshift
  • Cloud based services: GCP (preferred) or AWS
  • Agentic development frameworks
  • Automations


About You


  • 4 years+ experience as a Data Engineer solving complex and scaled data challenges
  • Someone who can work in and lead cross-functional scrum teams
  • Problem-solver mindset
  • You welcome responsibility and want to shape products
  • Excellent communicator able to distil down complex matters to various stakeholders
  • Willing and able to mentor and support juniors and peers as necessary


What's on offer


  • Work alongside some of the brightest minds and leading advertising technologies
  • Shaping the future of online advertising
  • A genuinely memorable experience you will look back on fondly
  • Health & Wellness package
  • Medical Insurance
  • Income Protection
  • Childcare vouchers
  • Gym & Cycle scheme
  • Pension
  • Life Assurance
  • Hybrid working (2-3 days) from a Central London office
  • 30+ holidays plus bank holidays (pro-rated)
  • Lots of one-off and regular treats & socials


We're screening & interviewing right away - so apply now if this sounds like you - or get in touch if you know someone that might be more closely suited for a generous referral fee

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